Factor Graphs for Heterogeneous Bayesian Decentralized Data Fusion

06/24/2021
by   Ofer Dagan, et al.
0

This paper explores the use of factor graphs as an inference and analysis tool for Bayesian peer-to-peer decentralized data fusion. We propose a framework by which agents can each use local factor graphs to represent relevant partitions of a complex global joint probability distribution, thus allowing them to avoid reasoning over the entirety of a more complex model and saving communication as well as computation cost. This allows heterogeneous multi-robot systems to cooperate on a variety of real world, task oriented missions, where scalability and modularity are key. To develop the initial theory and analyze the limits of this approach, we focus our attention on static linear Gaussian systems in tree-structured networks and use Channel Filters (also represented by factor graphs) to explicitly track common information. We discuss how this representation can be used to describe various multi-robot applications and to design and analyze new heterogeneous data fusion algorithms. We validate our method in simulations of a multi-agent multi-target tracking and cooperative multi-agent mapping problems, and discuss the computation and communication gains of this approach.

READ FULL TEXT
research
03/14/2022

Conservative Filtering for Heterogeneous Decentralized Data Fusion in Dynamic Robotic Systems

This paper presents a method for Bayesian multi-robot peer-to-peer data ...
research
01/26/2021

Exact and Approximate Heterogeneous Bayesian Decentralized Data Fusion

In Bayesian peer-to-peer decentralized data fusion for static and dynami...
research
09/17/2022

Heterogeneous Bayesian Decentralized Data Fusion: An Empirical Study

In multi-robot applications, inference over large state spaces can often...
research
07/20/2023

Exploiting Structure for Optimal Multi-Agent Bayesian Decentralized Estimation

A key challenge in Bayesian decentralized data fusion is the `rumor prop...
research
05/23/2018

Collective Online Learning via Decentralized Gaussian Processes in Massive Multi-Agent Systems

Distributed machine learning (ML) is a modern computation paradigm that ...
research
12/16/2022

Addressing Data Heterogeneity in Decentralized Learning via Topological Pre-processing

Recently, local peer topology has been shown to influence the overall co...
research
06/23/2021

Robust Task Scheduling for Heterogeneous Robot Teams under Capability Uncertainty

This paper develops a stochastic programming framework for multi-agent s...

Please sign up or login with your details

Forgot password? Click here to reset